5 research outputs found

    Unsupervised Cross-Task Generalization via Retrieval Augmentation

    Full text link
    Humans can perform unseen tasks by recalling relevant skills that are acquired previously and then generalizing them to the target tasks, even if there is no supervision at all. In this paper, we aim to improve such cross-task generalization ability of massive multi-task language models such as T0 (Sanh et al., 2021) in an unsupervised setting. We propose a retrieval-augmentation method named ReCross that takes a few unlabelled examples as queries to retrieve a small subset of upstream data and uses them to update the multi-task model for better generalization. Our empirical results show that the proposed ReCross consistently outperforms non-retrieval baselines by a significant margin.Comment: Project website: https://inklab.usc.edu/ReCross

    88

    No full text
    This report chronicles the process of producing the video drama, 88. The drama is a 24- minute short video produced by a student group, Ba Gua Production, as its final-year project done under the supervision of Ms Nikki Draper.Bachelor of Communication Studie

    88

    No full text
    This report chronicles the process of producing the video drama, 88. The drama is a 24- minute short video produced by a student group, Ba Gua Production, as its final-year project done under the supervision of Ms Nikki Draper.Bachelor of Communication Studie
    corecore